Whole-Body Control from Upper Body Task Specifications. - HRI-US
Whole-Body Control from Upper Body Task Specifications.
PUBLISHED INInternational Conference on Robotics and Automation (ICRA). Anchorage, AK.
PUBLICATION DATE01 máj. 2010
AUTHORSG. Bin-Hammam, D. Orin, B. Dariush
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